You seem to think that one-liner code is somehow better than longer, more explicit (and more readable) code.
In particular, list comprehensions are not a technique for 'optimisation'. When the Python compiler sees a list comprehension, it breaks it down into a for loop. Look at bytecode 13 (
In : from dis import dis
In : code = "[i for i in xrange(100)]"
In : dis(compile(code, '', 'single'))
1 0 BUILD_LIST 0
3 LOAD_NAME 0 (xrange)
6 LOAD_CONST 0 (100)
9 CALL_FUNCTION 1
>> 13 FOR_ITER 12 (to 28)
16 STORE_NAME 1 (i)
19 LOAD_NAME 1 (i)
22 LIST_APPEND 2
25 JUMP_ABSOLUTE 13
>> 28 POP_TOP
29 LOAD_CONST 1 (None)
The fact that a list comprehension is the same as a for loop can also be seen by timing it. In this case, the for loop actually worked out slightly (but insignificantly) faster:
In : %timeit l = [i for i in xrange(100)]
100000 loops, best of 3: 13.6 us per loop
In : %%timeit l = ; app = l.append # optimise out the attribute lookup for a fairer test
...: for i in xrange(100):
100000 loops, best of 3: 11.9 us per loop # insignificant difference. Run it yourself and you might get it the other way around
You can therefore write any given list comprehension as a for loop with a minimal performance hit (in practice there is usually a small difference due to attribute lookup), and often a significant readability benefit. In particular, loops which have side effects should not be written as list comprehensions. Nor should you use list comprehensions that have more than about two
for keywords, or which make a line longer than 70 characters or so. These aren't hard-and-fast rules, just heuristics for writing readable code.
Don't get me wrong, list comprehensions are very useful, and can often be clearer, simpler and more concise than an equivalent for-loop-and-append. But they are not to be abused in this way.